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https://issues.apache.org/jira/browse/HBASE-12590?page=com.atlassian.jira.plugin.system.issuetabpanels:all-tabpanel
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Jonathan Hsieh updated HBASE-12590:
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    Summary: kim  (was: A solution for data skew in HBase-Mapreduce Job )

> kim
> ---
>
>                 Key: HBASE-12590
>                 URL: https://issues.apache.org/jira/browse/HBASE-12590
>             Project: HBase
>          Issue Type: Improvement
>          Components: mapreduce
>            Reporter: Weichen Ye
>         Attachments: A Solution for Data Skew in HBase-MapReduce Job.pdf, 
> HBase-12590-v1.patch
>
>
> 1, Motivation
> In production environment, data skew is a very common case. A HBase table 
> always contains a lot of small regions and several large regions. Small 
> regions waste a lot of computing resources. If we use a job to scan a table 
> with 3000 small regions, we need a job with 3000 mappers. Large regions 
> always block the job. If in a 100-region table, one region is far larger then 
> the other 99 regions. When we run a job with the table as input, 99 mappers 
> will be completed very quickly, and we need to wait for the last mapper for a 
> long time.
> 2, Configuration
> Add two new configuration. 
> hbase.mapreduce.split.autobalance = true means enabling the “auto balance” in 
> HBase-MapReduce jobs. The default value is false. 
> hbase.mapreduce.split.targetsize = 1073741824 (default 1GB). The target size 
> of mapreduce splits. 
> If a region size is large than the target size, cut the region into two 
> split.If the sum of several small continuous region size less than the target 
> size, combine these regions into one split.
> Example:
> In attachment
> Welcome to the Review Board.
> https://reviews.apache.org/r/28494/diff/#



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